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99 lines
3.2 KiB
Cython
99 lines
3.2 KiB
Cython
# cython: infer_types=True
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from .kb_in_memory cimport InMemoryLookupKB
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from ..errors import Errors
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cdef class Candidate:
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"""A `Candidate` object refers to a textual mention that may or may not be resolved
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to a specific entity from a Knowledge Base. This will be used as input for the entity linking
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algorithm which will disambiguate the various candidates to the correct one.
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Each candidate, which represents a possible link between one textual mention and one entity in the knowledge base,
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is assigned a certain prior probability.
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DOCS: https://spacy.io/api/kb/#candidate-init
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"""
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def __init__(self):
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# Make sure abstract Candidate is not instantiated.
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if self.__class__ == Candidate:
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raise TypeError(
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Errors.E1046.format(cls_name=self.__class__.__name__)
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)
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@property
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def entity_id(self) -> int:
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"""RETURNS (int): Numerical representation of entity ID (if entity ID is numerical, this is just the entity ID,
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otherwise the hash of the entity ID string)."""
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raise NotImplementedError
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@property
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def entity_id_(self) -> str:
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"""RETURNS (str): String representation of entity ID."""
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raise NotImplementedError
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@property
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def entity_vector(self) -> vector[float]:
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"""RETURNS (vector[float]): Entity vector."""
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raise NotImplementedError
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cdef class InMemoryCandidate(Candidate):
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"""Candidate for InMemoryLookupKB."""
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def __init__(
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self,
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kb: InMemoryLookupKB,
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entity_hash: int,
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alias_hash: int,
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entity_vector: vector[float],
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prior_prob: float,
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entity_freq: float
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):
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"""
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kb (InMemoryLookupKB]): InMemoryLookupKB instance.
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entity_id (int): Entity ID as hash that can be looked up with InMemoryKB.vocab.strings.__getitem__().
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entity_freq (int): Entity frequency in KB corpus.
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entity_vector (List[float]): Entity embedding.
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alias_hash (int): Alias hash.
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prior_prob (float): Prior probability of entity for this alias. I. e. the probability that, independent of
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the context, this alias - which matches one of this entity's aliases - resolves to one this entity.
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"""
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super().__init__()
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self._entity_hash = entity_hash
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self._entity_vector = entity_vector
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self._prior_prob = prior_prob
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self._kb = kb
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self._alias_hash = alias_hash
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self._entity_freq = entity_freq
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@property
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def entity_id(self) -> int:
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return self._entity_hash
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@property
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def entity_vector(self) -> vector[float]:
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return self._entity_vector
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@property
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def prior_prob(self) -> float:
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"""RETURNS (float): Prior probability that this alias, which matches one of this entity's synonyms, resolves to
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this entity."""
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return self._prior_prob
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@property
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def alias(self) -> str:
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"""RETURNS (str): Alias."""
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return self._kb.vocab.strings[self._alias_hash]
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@property
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def entity_id_(self) -> str:
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return self._kb.vocab.strings[self._entity_hash]
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@property
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def entity_freq(self) -> float:
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"""RETURNS (float): Entity frequency in KB corpus."""
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return self._entity_freq
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